研究ユニット
教員・研究ユニット・専門分野を探す
情報理論、確率、統計学ユニット
The Information Theory, Probability and Statistics Unit performs theoretical research at the intersection of the fields described in the name with applications to various areas that include Estimation Theory, Computational Biology, Hypothesis Testing, etc.
アメデオ ロベルト・エスポジート
准教授
海洋物理・工学ユニット
The Marine Physics and Engineering Unit advances the forecast of ocean dynamics and the development of hydrodynamic disaster mitigation alternatives, paving the way for novel ocean technologies.
アミン・シャブシュブ
准教授
理論生物物理学ユニット
物理学者たちは長い間、物質およびエネルギーの本質を説明できる普遍的法則を探し求めてきましたが、最近まで複雑な生物系の研究は困難でした。理論生物物理学ユニットでは...
グレッグ・スティーブンズ
准教授(アジャンクト)
生物の非線形力学データサイエンス研究ユニット
The biological nonlinear dynamics data science unit investigates complex systems explicitly taking into account the role of time. We do this by instead of averaging occurrences using their statistics, we treat observations as frames of a movie and if patterns reoccur then we can use their behaviors in the past to predict their future. In most cases the systems that we study are part of complex networks of interactions and cover multiple scales. These include but are not limited to systems neuroscience, gene expression, posttranscriptional regulatory processes, to ecology, but also include societal and economic systems that have complex interdependencies. The processes that we are most interested in are those where the data has a particular geometry known as low dimensional manifolds. These are geometrical objects generated from embeddings of data that allows us to predict their future behaviors, investigate causal relationships, find if a system is becoming unstable, find early warning signs of critical transitions or catastrophes and more. Our computational approaches are based on tools that have their origin in the generalized Takens theorem, and are collectively known as empirical dynamic modeling (EDM). As a lab we are both a wet and dry lab where we design wet lab experiments that maximize the capabilities of our mathematical methods. The results from this data driven science approach then allows us to generate mechanistic hypotheses that can be again tested experimentally for empirical confirmation. This approach merges traditional hypothesis driven science and the more modern Data driven science approaches into a single virtuous cycle of discovery.
ジェラルド・パオ
准教授
神経計算ユニット
神経計算ユニットでは、脳のように柔軟かつ確実な学習を実現するアルゴリズムの開発と、それによる脳の学習の仕組みの解明に取り組んでいます。最大のテーマは「強化学習」...
銅谷 賢治
教授